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但需要冷静区分的是,报名人数不等于盈利能力,春节订单增速也不等于全年常态。节庆节点本身具有需求放大效应,而城市合伙人作为“本地服务节点”,在订单分发与流量供给上高度依赖平台规则。一旦订单密度、价格水平或分发机制发生变化,地方节点的收益结构可能随之波动。
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One challenge is having enough training data. Another is that the training data needs to be free of contamination. For a model trained up till 1900, there needs to be no information from after 1900 that leaks into the data. Some metadata might have that kind of leakage. While it’s not possible to have zero leakage - there’s a shadow of the future on past data because what we store is a function of what we care about - it’s possible to have a very low level of leakage, sufficient for this to be interesting.